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  4. A two-phase approach for leak detection and localization in water distribution systems using wavelet decomposition and machine learning
 
research article

A two-phase approach for leak detection and localization in water distribution systems using wavelet decomposition and machine learning

Adraoui, Meriem
•
Azmi, Rida
•
Chenal, Jérôme  
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November 2024
Computers & Industrial Engineering

Water is a crucial resource for all forms of life, yet it is becoming increasingly scarce. A significant portion of water loss in urban and industrial areas is attributed to leaks. Addressing this issue is critical for enhancing efficiency, sustainability, and resource conservation. This paper presents a novel two-phase approach for leak detection and localization in water distribution systems using wavelet decomposition and machine learning for depth analysis of pressure signals. The first phase, Leak Detection, utilizes wavelet analysis to extract significant features from the daily pressure signal data. These features are then inputted into a Random Forest classifier, achieving a classification accuracy of 99% for distinguishing between “Leak” and “No Leak” scenarios. Following the detection, the Leak Localization phase aims to pinpoint the leak’s location using strategically placed sensors within the system. To facilitate understanding and application of our methodology, we have developed a user-friendly, web-based application designed for the detection and localization of water leaks on any given day. Extensive testing in a WDS named “L-Town” has validated our system’s ability to accurately identify leaks. The combination of wavelet-based signal analysis and the Random Forest algorithm forms an effective framework for advanced leak detection in water distribution systems. This approach holds great promise for future research and practical implementations in water management.

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Type
research article
DOI
10.1016/j.cie.2024.110534
Author(s)
Adraoui, Meriem
Azmi, Rida
Chenal, Jérôme  

EPFL

Diop, El Bachir
Abdem, Seyid Abdellahi Ebnou
Serbouti, Imane
Hlal, Mohammed
Bounabi, Mariem
Date Issued

2024-11

Publisher

Elsevier BV

Published in
Computers & Industrial Engineering
Volume

197

Article Number

110534

Subjects

Leakage detection

•

Wavelet decomposition

•

Leakage localization

•

Machine learning

•

Random forest

•

Water management

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CEAT  
Available on Infoscience
November 25, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/242124
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